机器学习在光子传感器实时评估饮用水盐度中的应用

Sandipta Roy, Preeta Sharan
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引用次数: 11

摘要

摘要世界正面临着一个前所未有的问题,即如何保护0.4% %的饮用水,而这些饮用水正日益枯竭。从文献综述中观察到,水的折射率(RI)随盐度或总溶解固体(TDS)的变化而变化。本文提出了一种可用于饮用水中盐度或TDS实时评价的自动系统。利用MEEP (MIT电磁方程传播)工具和时域有限差分(FDTD)算法,设计并仿真了一种基于光子晶体(PhC)的环形谐振器传感器。模拟和设计的传感器对水样的RI变化高度敏感。这项工作包括一个基于实时的自然序列跟随器,这是一个朴素贝叶斯类型的机器学习算法,一个参考训练数据在MATLAB中实现的统计算法序列来分析样本水。进一步的接口已经完成使用树莓派设备提供一个简单的显示,以显示水分析的结果。设计的带有接口的传感器的主要优点是检查饮用水中的盐度或TDS是否小于1000 ppm。如果大于等于2000 ppm,则显示“高盐度/观察到TDS”,如果ppm小于等于1000 ppm,则显示“低盐度/观察到TDS”。该传感器具有很高的灵敏度,可以检测到水中任何溶解物质对TDS水平的影响。
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Application of machine learning for real-time evaluation of salinity (orTDS) in drinking water using photonic sensors
Abstract. The world is facing an unprecedented problem in safeguarding 0.4 % of potable water, which is gradually depleting day-by-day. From a literature survey it has been observed that the refractive index (RI) of water changes with a change in salinity or total dissolved solids (TDS). In this paper we have proposed an automatic system that can be used for real-time evaluation of salinity or TDS in drinking water. A photonic crystal (PhC) based ring resonator sensor has been designed and simulated using the MEEP (MIT Electromagnetic Equation Propagation) tool and the finite difference time domain (FDTD) algorithm. The modelled and designed sensor is highly sensitive to the changes in the RI of a water sample. This work includes a real-time-based natural sequence follower, which is a machine learning algorithm of the naive Bayesian type, a sequence of statistical algorithms implemented in MATLAB with reference to training data to analyse the sample water. Further interfacing has been done using the Raspberry Pi device to provide an easy display to show the result of water analysis. The main advantage of the designed sensor with an interface is to check whether the salinity or TDS in drinking water is less than 1000 ppm or not. If it is greater than or equal to 2000 ppm, the display shows “High Salinity/TDS Observed”, and if ppm are less than or equal to 1000 ppm, then the display shows “Low salinity/TDS Observed”. The proposed sensor is highly sensitive and it can detect changes in TDS level because of the influence of any dissolved substance in water.
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来源期刊
Drinking Water Engineering and Science
Drinking Water Engineering and Science Environmental Science-Water Science and Technology
CiteScore
3.90
自引率
0.00%
发文量
3
审稿时长
40 weeks
期刊最新文献
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